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Confluence of AI, Machine, and Deep Learning in Cyber Forensics

✍ Scribed by Sanjay Misra (editor), Chamundeswari Arumugam (editor), Suresh Jaganathan (editor)


Publisher
Information Science Reference
Year
2020
Tongue
English
Leaves
267
Series
Advances in Digital Crime, Forensics, and Cyber Terrorism (ADCFCT)
Category
Library

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✦ Synopsis


Developing a knowledge model helps to formalize the difficult task of analyzing crime incidents in addition to preserving and presenting the digital evidence for legal processing. The use of data analytics techniques to collect evidence assists forensic investigators in following the standard set of forensic procedures, techniques, and methods used for evidence collection and extraction. Varieties of data sources and information can be uniquely identified, physically isolated from the crime scene, protected, stored, and transmitted for investigation using AI techniques. With such large volumes of forensic data being processed, different deep learning techniques may be employed.

Confluence of AI, Machine, and Deep Learning in Cyber Forensics contains cutting-edge research on the latest AI techniques being used to design and build solutions that address prevailing issues in cyber forensics and that will support efficient and effective investigations. This book seeks to understand the value of the deep learning algorithm to handle evidence data as well as the usage of neural networks to analyze investigation data. Other themes that are explored include machine learning algorithms that allow machines to interact with the evidence, deep learning algorithms that can handle evidence acquisition and preservation, and techniques in both fields that allow for the analysis of huge amounts of data collected during a forensic investigation. This book is ideally intended for forensics experts, forensic investigators, cyber forensic practitioners, researchers, academicians, and students interested in cyber forensics, computer science and engineering, information technology, and electronics and communication.

✦ Table of Contents


Title Page
Copyright Page
Book Series
Table of Contents
Detailed Table of Contents
Preface
Acknowledgment
Chapter 1: A Comprehensive Perspective on Mobile Forensics
Chapter 2: Applications of Machine Learning in Cyber Forensics
Chapter 3: Machine Learning Forensics
Chapter 4: Crucial Role of Data Analytics in the Prevention and Detection of Cyber Security Attacks
Chapter 5: Deep Learning Approaches to Overcome Challenges in Forensics
Chapter 6: Deep Learning-Based Malware Detection and Classification
Chapter 7: Detecting Fake News Using Deep Learning and NLP
Chapter 8: Impediments in Mobile Forensics
Chapter 9: Use-Case of Blockchain in Cybercrime and Cyberattack
Chapter 10: Motivational Quotes-Based Intelligent Insider Threat Prediction Model
Chapter 11: Challenges of Developing AI Applications in the Evolving Digital World and Recommendations to Mitigate Such Challenges
Chapter 12: Challenges in Developing Software in Today's Scenario
Compilation of References
About the Contributors
Index


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